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研究生: 洋風
Füle János Róbert
論文名稱: Applied Digital Sensor Technology in the Analysis of Different Intensity Movements and Sensor Placements
Applied Digital Sensor Technology in the Analysis of Different Intensity Movements and Sensor Placements
指導教授: 相子元
Shiang, Tzyy-Yuang
學位類別: 博士
Doctor
系所名稱: 體育學系
Department of Physical Education
論文出版年: 2014
畢業學年度: 102
語文別: 英文
論文頁數: 58
中文關鍵詞: MovementIntensityIMUDigital SensorAccelerationAngular velocity
英文關鍵詞: Movement, Intensity, IMU, Digital Sensor, Acceleration, Angular velocity
論文種類: 學術論文
相關次數: 點閱:161下載:16
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  • Purpose: The study analyzed and compared movement modes and cycles, intensity levels and digital sensor positions. The target was to identify characteristics of body movements that could pave the way to a healthy and sustainable life. Revelations of the study provide potential information for creating a new sporting equipment and experience. Method: The observation of locomotion was executed with three high-tech Inertial Measurement Units (IMUs) that were attached to participants at three locations (shoe, wrist and waist). IMU was the fusion of a gyroscope and an accelerometer. Walk, Run and Jump movements were compared at two intensities. Result: The statistical analysis revealed an applicable correlation between movements and intensities. The simple effects test resulted in non-significant interaction between movements and intensities. This interaction served as a tool for comparing movement patterns with each other. Body movements included a series of gait cycles. The gait cycle was determined by acceleration data. Peak to peak intervals caused by the heel strike of the left foot were compared. Angular velocity data of gait cycles were benchmarked among different intensities. As a result the Shoe IMU measured the angular velocity on the frontal Y axis and discovered a regular sequence of plantar and dorsiflexion. Conclusion: Angular velocity data from the frontal axis clearly identified the movement features of walking, running and jumping. The acceleration data on the sagittal plane could distinguish between low and high intensity movements. The acceleration and gyroscope data determined the intensities and the body movements. The locomotion of lower extremities was widely explored. Waist and wrist IMU data even enabled the estimation of energy expenditure. Analysis methods of sensor signals were subject to investigation. Application of multiple digital sensors provided a unique opportunity for new observations.

    Purpose: The study analyzed and compared movement modes and cycles, intensity levels and digital sensor positions. The target was to identify characteristics of body movements that could pave the way to a healthy and sustainable life. Revelations of the study provide potential information for creating a new sporting equipment and experience. Method: The observation of locomotion was executed with three high-tech Inertial Measurement Units (IMUs) that were attached to participants at three locations (shoe, wrist and waist). IMU was the fusion of a gyroscope and an accelerometer. Walk, Run and Jump movements were compared at two intensities. Result: The statistical analysis revealed an applicable correlation between movements and intensities. The simple effects test resulted in non-significant interaction between movements and intensities. This interaction served as a tool for comparing movement patterns with each other. Body movements included a series of gait cycles. The gait cycle was determined by acceleration data. Peak to peak intervals caused by the heel strike of the left foot were compared. Angular velocity data of gait cycles were benchmarked among different intensities. As a result the Shoe IMU measured the angular velocity on the frontal Y axis and discovered a regular sequence of plantar and dorsiflexion. Conclusion: Angular velocity data from the frontal axis clearly identified the movement features of walking, running and jumping. The acceleration data on the sagittal plane could distinguish between low and high intensity movements. The acceleration and gyroscope data determined the intensities and the body movements. The locomotion of lower extremities was widely explored. Waist and wrist IMU data even enabled the estimation of energy expenditure. Analysis methods of sensor signals were subject to investigation. Application of multiple digital sensors provided a unique opportunity for new observations.

    ABSTRACT I ACKNOWLEDGEMENT II TABLE OF CONTENTS ........................................................................................................III LIST OF FIGURES IV LIST OF TABLES V CHAPTER I. INTRODUCTION 1 IMPORTANCE OF THE STUDY 4 THE CURRENT STATE OF DIGITAL SENSOR APPLICATION IN PHYSICAL ACTIVITY AND IN HUMAN MOVEMENT STUDIES 5 DIFFERENT INTENSITY MOVEMENTS AND SENSOR PLACEMENT 9 PROPOSED APPROACH TO SOLVE THE RESEARCH PROBLEM 17 CHAPTER II. METHOD 20 PARTICIPANTS 20 EQUIPMENT 20 PROTOCOL 23 DATA PROCESSING 28 STATISTCAL METHOD 29 CHAPTER III. RESULTS 30 CHAPTER IV. DISCUSSION 45 CHAPTER V. CONCLUSION……………………………………………………………….51 REFERENCE 53

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